基于训练模型的训练计划演变

David Schaefer, A. Asteroth, M. Ludwig
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引用次数: 16

摘要

已经提出了训练模型来模拟身体应变对健康的影响。在这项工作中,我们探索了它们的用途,不仅用于分析,而且还用于生成训练计划,以实现给定的健身目标。这些计划必须包括侧面约束,例如,最大训练负荷。因此,规划生成可以看作是约束满足问题,因此可以用经典的CSP求解方法来求解。我们表明,进化算法,如差分进化或CMA-ES产生类似的结果,同时允许更大的灵活性和需要更少的计算资源。由于这种灵活性,在计划生成过程中可以包含众所周知的训练科学原理,从而产生合理的训练计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training plan evolution based on training models
Training models have been proposed to model the effect of physical strain on fitness. In this work we explore their use not only for analysis but also to generate training plans to achieve a given fitness goal. These plans have to include side constraints such as, e.g., maximal training loads. Therefore plan generation can be treated as a constraint satisfaction problem and thus can be solved by classical CSP solvers. We show that evolutionary algorithms such as differential evolution or CMA-ES produce comparable results while allowing for more flexibility and requiring less computational resources. Due to this flexibility, it is possible to include well known principles of training science during plan generation, resulting in reasonable training plans.
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